Herrero-Huerta Monica, Bucksch Alexander, Puttonen Eetu, Rainey Katy M
Department of Agronomy, Purdue University, West Lafayette, IN, USA.
Department of Cartographic and Land Engineering, Higher Polytechnic School of Avila, University of Salamanca, Avila, Spain.
Plant Phenomics. 2020 Dec 8;2020:6735967. doi: 10.34133/2020/6735967. eCollection 2020.
Cost-effective phenotyping methods are urgently needed to advance crop genetics in order to meet the food, fuel, and fiber demands of the coming decades. Concretely, characterizing plot level traits in fields is of particular interest. Recent developments in high-resolution imaging sensors for UAS (unmanned aerial systems) focused on collecting detailed phenotypic measurements are a potential solution. We introduce canopy roughness as a new plant plot-level trait. We tested its usability with soybean by optical data collected from UAS to estimate biomass. We validate canopy roughness on a panel of 108 soybean [Glycine max (L.) Merr.] recombinant inbred lines in a multienvironment trial during the R2 growth stage. A senseFly eBee UAS platform obtained aerial images with a senseFly S.O.D.A. compact digital camera. Using a structure from motion (SfM) technique, we reconstructed 3D point clouds of the soybean experiment. A novel pipeline for feature extraction was developed to compute canopy roughness from point clouds. We used regression analysis to correlate canopy roughness with field-measured aboveground biomass (AGB) with a leave-one-out cross-validation. Overall, our models achieved a coefficient of determination ( ) greater than 0.5 in all trials. Moreover, we found that canopy roughness has the ability to discern AGB variations among different genotypes. Our test trials demonstrate the potential of canopy roughness as a reliable trait for high-throughput phenotyping to estimate AGB. As such, canopy roughness provides practical information to breeders in order to select phenotypes on the basis of UAS data.
为了满足未来几十年的食物、燃料和纤维需求,迫切需要具有成本效益的表型分析方法来推动作物遗传学发展。具体而言,对田间小区水平的性状进行表征尤为重要。用于无人机(无人驾驶航空系统)的高分辨率成像传感器的最新发展聚焦于收集详细的表型测量数据,这是一个潜在的解决方案。我们引入冠层粗糙度作为一种新的植物小区水平性状。我们通过从无人机收集的光学数据来测试其在大豆上用于估计生物量的可用性。我们在R2生长阶段的多环境试验中,对108个大豆[Glycine max (L.) Merr.]重组自交系的面板进行冠层粗糙度验证。一个senseFly eBee无人机平台使用senseFly S.O.D.A.紧凑型数码相机获取航拍图像。利用运动结构(SfM)技术,我们重建了大豆试验的三维点云。开发了一种新颖的特征提取管道,用于从点云计算冠层粗糙度。我们使用回归分析,通过留一法交叉验证将冠层粗糙度与田间测量的地上生物量(AGB)进行关联。总体而言,我们的模型在所有试验中均实现了决定系数( )大于0.5。此外,我们发现冠层粗糙度有能力辨别不同基因型之间的AGB差异。我们的测试试验证明了冠层粗糙度作为一种可靠性状用于高通量表型分析以估计AGB的潜力。因此,冠层粗糙度为育种者提供了实用信息,以便根据无人机数据选择表型。